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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Incorporating Gene Functions into Regression Analysis of DNA-Protein Binding Data and Gene Expression Data to Construct Transcriptional Networks
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Incorporating Gene Functions into Regression Analysis of DNA-Protein Binding Data and Gene Expression Data to Construct Transcriptional Networks

机译:将基因功能整合到DNA-蛋白质结合数据和基因表达数据的回归分析中以构建转录网络

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摘要

Useful information on transcriptional networks has been extracted by regression analyses of gene expression data and DNA-protein binding data. However, a potential limitation of these approaches is their assumption on the common and constant activity level of a transcription factor (TF) on all of the genes in any given experimental condition, for example, any TF is assumed to be either an activator or a repressor, but not both, whereas it is known that some TFs can be dual regulators. Rather than assuming a common linear regression model for all of the genes, we propose using separate regression models for various gene groups; the genes can be grouped based on their functions or some clustering results. Furthermore, to take advantage of the hierarchical structure of many existing gene function annotation systems such as gene ontology (GO), we propose a shrinkage method that borrows information from relevant gene groups. Applications to a yeast data set and simulations lend support to our proposed methods. In particular, we find that the shrinkage method consistently works well under various scenarios. We recommend the use of the shrinkage method as a useful alternative to the existing methods.
机译:通过对基因表达数据和DNA-蛋白质结合数据的回归分析,已经提取了有关转录网络的有用信息。但是,这些方法的潜在局限性在于它们假定在任何给定的实验条件下所有基因上转录因子(TF)的共同且恒定的活性水平,例如,假定任何TF是激活剂或激活因子。阻遏器,但不是两者兼有,而众所周知,某些TF可以是双稳压器。我们建议为各个基因组使用单独的回归模型,而不是为所有基因都假设一个通用的线性回归模型。这些基因可以根据其功能或某些聚类结果进行分组。此外,为了利用许多现有的基因功能注释系统(例如基因本体(GO))的层次结构,我们提出了一种收缩方法,该方法借鉴了相关基因组的信息。在酵母数据集和模拟中的应用为我们提出的方法提供了支持。特别是,我们发现收缩方法在各种情况下均能很好地工作。我们建议使用收缩方法作为现有方法的有用替代方法。

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